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Part II
Data Management and Technology
Chapter 7
Database and Customer Data Development
© Taylor & Francis 2016
7.1 Introduction
- Organizations have become extremely proficient at generating data
- Mass infusion of data has created unlimited opportunities for building relationships with customers
- The Internet has accelerated data generation and has challenged organizations to determine how to leverage this data in an effort to sustain and grow relationships with their customers
© Taylor & Francis 2016
7.2 Data Defined
- Primary data
- Acquired from the original source
- Secondary data
- Acquired from some party other than the party from which the data represents
- Derived data
- Information created from other data
- Individual data
- Attributed to a specific person
- Household data
- View of data from a household perspective
© Taylor & Francis 2016
7.3 Data Capture
- Touch points
- One of the key steps of the customer data integration process
- New touch points presenting challenges (e.g. IoT, Mobile, GEO)
- Real-time versus batch
- Marketers need data to be captured and disseminated at different situations
- Data captured may need to be processed and action taken as soon as possible
- Marketer may not need to know information until a trend or pattern has emerged
- Organization and data management
- Internal versus external
- How much data?
© Taylor & Francis 2016
7.4 Data Transformation
- Convert data into information
- Information aging
- Convert information into knowledge
DATA → INFORMATION → KNOWLEDGE
© Taylor & Francis 2016
7.5 Business Intelligence (BI) and Business Analytics (BA)
- Data mining—review historical information in an effort to generate business intelligence
- Descriptive analytics—review historical for the purpose of understanding what happened and why
- Predictive analytics—answers the question “what will happen and when may it happen?”
- Streaming analytics—real-time process which captures data through interpretation of data filtering complex event processing
- Prescriptive analytics—provides the “why” as well as suggested options to ensure the “what and when” will occur and enhance, modify, or prevent the occurrence
© Taylor & Francis 2016
7.5 Support Systems
- Decision support systems
- Software systems designed for a specific purpose
- Easy to use with graphical user interfaces
- Can be partially or fully automated
- Executive information systems
- Designed to provide information for higher-level decision making through the use of dashboards
- Enterprise resource planning systems
- Integrate most, if not all, business functions
© Taylor & Francis 2016
7.5 Location and Access Considerations
- Decision on data location dependent upon respective BI and BA activity
- Operational data store supports dynamic business activity—telemarketing, Web, mobile, P.O.S, IoT
- Data warehouse is an optimal entity for any analytical activity requiring static and inclusive data—(e.g. data mining, predictive analytics)
- Data marts are efficient entities due to inclusion of relative data and access via very specific software
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© Taylor & Francis 2016
7.5 Location and Access Considerations
- Big data/data lakes are foundations for unstructured data (e.g. digital customer interactions, social conversations, emails, IoT endpoint sensors, videos, audio clips)
- Unstructured data access two ways
- Exploration—data mining
- Enhance previously defined business issue
- Cloud used to describe entity location
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© Taylor & Francis 2016
7.5 Other Analytical Techniques
- Recency, frequency, and monetary (RFM)
- Not a “true” data mining approach
- Uses historical information from three data categories and the user makes an assumption that past behavior is a good predictor of future behavior
- Decision trees
- Leaves represent classifications, and branches represent conjunctions of features that lead to those classifications
- Created by splitting the source set into subsets based on an attribute value test
- More complex than RFM
- Helps turn complex data representation into a much easier structure
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© Taylor & Francis 2016
7.5 Data Mining
- Cluster analysis
- Place customers/prospects into groups such that everyone in the group has similar traits
- Categories include demographics, psychographics, behavioral, geographics
- Other data mining techniques
- Artificial neural network, business intelligence (BI), data stream mining, fuzzy logic, nearest neighbor algorithm, pattern recognition, relational data mining, text mining, chi-Square, t-test, regression, correlation
© Taylor & Francis 2016
7.5 Data Mining
- Data mining benefits
- Better understanding of customers and prospects supports relationship-building efforts
- Measurable
- Fatigue prevention
- Precipitate new opportunities
- Fraud detection and identification of nonfavorable behavior
© Taylor & Francis 2016
7.5 Data Mining
- Data mining challenges
- Organizational obstacles to attaining data
- Cost versus benefit
- Ability to capture data
- Giving customer/prospect perception of invasiveness
- Privacy issues
- Sustained secondary availability
© Taylor & Francis 2016
7.6 Enabling CRM
- Industry examples illustrate how data capture, transformation, and mining help enable CRM
- Manufacturer tools products
- Entertainment and hotel
- Financial services
- Infant formula manufacturer
- Apparel cataloger
- Hotel and travel
- Retail grocery
- Small business
- Fraud detection and other nonfavorable behavior